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首页> 外文期刊>Journal of medical Internet research >A Web-Based Non-Intrusive Ambient System to Measure and Classify Activities of Daily Living
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A Web-Based Non-Intrusive Ambient System to Measure and Classify Activities of Daily Living

机译:基于Web的非侵入式环境系统,用于测量和分类日常生活活动

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Background: The number of older adults in the global population is increasing. This demographic shift leads to an increasing prevalence of age-associated disorders, such as Alzheimer’s disease and other types of dementia. With the progression of the disease, the risk for institutional care increases, which contrasts with the desire of most patients to stay in their home environment. Despite doctors’ and caregivers’ awareness of the patient’s cognitive status, they are often uncertain about its consequences on activities of daily living (ADL). To provide effective care, they need to know how patients cope with ADL, in particular, the estimation of risks associated with the cognitive decline. The occurrence, performance, and duration of different ADL are important indicators of functional ability. The patient’s ability to cope with these activities is traditionally assessed with questionnaires, which has disadvantages (eg, lack of reliability and sensitivity). Several groups have proposed sensor-based systems to recognize and quantify these activities in the patient’s home. Combined with Web technology, these systems can inform caregivers about their patients in real-time (eg, via smartphone).Objective: We hypothesize that a non-intrusive system, which does not use body-mounted sensors, video-based imaging, and microphone recordings would be better suited for use in dementia patients. Since it does not require patient’s attention and compliance, such a system might be well accepted by patients. We present a passive, Web-based, non-intrusive, assistive technology system that recognizes and classifies ADL.Methods: The components of this novel assistive technology system were wireless sensors distributed in every room of the participant’s home and a central computer unit (CCU). The environmental data were acquired for 20 days (per participant) and then stored and processed on the CCU. In consultation with medical experts, eight ADL were classified.Results: In this study, 10 healthy participants (6 women, 4 men; mean age 48.8 years; SD 20.0 years; age range 28-79 years) were included. For explorative purposes, one female Alzheimer patient (Montreal Cognitive Assessment score=23, Timed Up and Go=19.8 seconds, Trail Making Test A=84.3 seconds, Trail Making Test B=146 seconds) was measured in parallel with the healthy subjects. In total, 1317 ADL were performed by the participants, 1211 ADL were classified correctly, and 106 ADL were missed. This led to an overall sensitivity of 91.27% and a specificity of 92.52%. Each subject performed an average of 134.8 ADL (SD 75).Conclusions: The non-intrusive wireless sensor system can acquire environmental data essential for the classification of activities of daily living. By analyzing retrieved data, it is possible to distinguish and assign data patterns to subjects' specific activities and to identify eight different activities in daily living. The Web-based technology allows the system to improve care and provides valuable information about the patient in real-time.
机译:背景:全球人口中老年人的数量正在增加。这种人口变化导致与年龄相关的疾病(例如阿尔茨海默氏病和其他类型的痴呆症)的患病率上升。随着疾病的进展,机构护理的风险增加,这与大多数患者希望留在家庭环境中的愿望形成对比。尽管医生和护理人员意识到患者的认知状况,但他们通常不确定其对日常生活活动(ADL)的影响。为了提供有效的护理,他们需要知道患者如何应对ADL,特别是与认知能力下降相关的风险估计。不同ADL的发生,性能和持续时间是功能能力的重要指标。传统上,患者会通过问卷来评估他们应对这些活动的能力,这有其缺点(例如,缺乏可靠性和敏感性)。一些小组提出了基于传感器的系统,以识别和量化患者家中的这些活动。这些系统与Web技术相结合,可以实时(例如,通过智能手机)通知护理人员其患者。目的:我们假设是一种非侵入式系统,该系统不使用人体感应器,基于视频的影像和麦克风录音将更适合痴呆症患者使用。由于不需要患者的注意力和依从性,因此这种系统可能会为患者所接受。我们提出了一种基于Web的无源,非侵入式辅助技术系统,该系统可以识别ADL并将其分类。方法:该新型辅助技术系统的组件是无线传感器,分布在参与者家中的每个房间和中央计算机单元(CCU) )。获取环境数据(每位参与者20天),然后在CCU上进行存储和处理。与医学专家协商,对八种ADL进行了分类。结果:本研究纳入了10名健康参与者(6名女性,4名男性;平均年龄48.8岁; SD 20.0岁;年龄范围28-79岁)。为了探索的目的,与健康受试者平行地测量了一名女性阿尔茨海默氏病患者(蒙特利尔认知评估得分= 23,计时并开始= 19.8秒,追踪测试A = 84.3秒,追踪测试B = 146秒)。参与者总共进行了1317次ADL,正确分类了1211次ADL,错过了106次ADL。这导致总体灵敏度为91.27%,特异性为92.52%。每个受试者平均执行134.8 ADL(SD 75)。结论:非侵入式无线传感器系统可以获取对于日常生活活动分类必不可少的环境数据。通过分析检索到的数据,可以区分数据模式并将其分配给受试者的特定活动,并识别日常生活中的八种不同活动。基于Web的技术使系统可以改善护理并实时提供有关患者的有价值的信息。

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